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Drug Response Prediction

Drug response prediction is about using computer methods to guess how someone will react to certain medicines. It involves looking at various types of data, like genes, drug structures, and medical records, to predict how well a person will respond to a particular treatment. The aim is to create personalized treatment plans for patients, ensuring they get the best results with the fewest side effects. This approach not only helps doctors choose the right medicines for each patient but also speeds up the development of new drugs by predicting their effectiveness and safety. Techniques like machine learning and deep learning are commonly used to make these predictions based on different types of data, such as genetics and medical history.

Papers

Showing 3140 of 46 papers

TitleStatusHype
A Fair Experimental Comparison of Neural Network Architectures for Latent Representations of Multi-Omics for Drug Response PredictionCode0
AGMI: Attention-Guided Multi-omics Integration for Drug Response Prediction with Graph Neural NetworksCode0
Benchmarking community drug response prediction models: datasets, models, tools, and metrics for cross-dataset generalization analysisCode0
CLDR: Contrastive Learning Drug Response Models from Natural Language SupervisionCode0
Controllable Edge-Type-Specific Interpretation in Multi-Relational Graph Neural Networks for Drug Response PredictionCode0
DRExplainer: Quantifiable Interpretability in Drug Response Prediction with Directed Graph Convolutional NetworkCode0
Learning Curves for Drug Response Prediction in Cancer Cell LinesCode0
Personalised Drug Identifier for Cancer Treatment with Transformers using Auxiliary InformationCode0
Precision Anti-Cancer Drug Selection via Neural RankingCode0
Towards generalization of drug response prediction to single cells and patients utilizing importance-aware multi-source domain transfer learningCode0
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